This thesis studies strengths and weaknesses of quantum computers. In the first part we present three contributions to quantum algorithms. 1) consider a search space of N elements. One of these elements is "marked" and our goal is to find this. We describe a quantum algorithm to solve this problem using essentially sqrt{N} queries and other operations, improving over the gate count of Grover's algorithm. 2) We give a succinct characterization of quantum algorithms in terms of polynomials, and develop a new technique for showing upper and lower bounds on quantum query complexity based on this. 3) One generic technique used to compute the minimum of a given function is "gradient descent". We present a quantum gradient-calculation algorithm an...
We present two new results about exact learning by quantum computers. First,we show how to exactly l...
In this dissertation, we study the intersection of quantum computing and supervised machine learning...
In this paper, we present a performance comparison of machine learning algorithms executed on tradit...
This paper introduces a framework for quantum exact learning via queries, the so-called quantum prot...
The theories of optimization and machine learning answer foundational questions in computer science ...
This dissertation explores results at the intersection of two important branches of theoretical comp...
Quantum Computing leverages the quantum properties of subatomic matter to enable computations faster...
This paper surveys quantum learning theory: the theoretical aspects of machine learning using quantu...
The theories of optimization and machine learning answer foundational questions in computer science ...
© 2020 The author(s). This is a review of quantum methods for machine learning problems that consist...
Today, a modern and interesting research area is machine learning. Another new and exciting research...
<p>This document present a brief introduction to basic notions in quantum computing and try to<br>gi...
Quantum machine learning has proven to be a fruitful area in which to search for potential applicati...
Quantum computing represents a promising paradigm for solving complex problems, such as large-number...
We initiate the study of quantum algorithms for escaping from saddle points with provable guarantee....
We present two new results about exact learning by quantum computers. First,we show how to exactly l...
In this dissertation, we study the intersection of quantum computing and supervised machine learning...
In this paper, we present a performance comparison of machine learning algorithms executed on tradit...
This paper introduces a framework for quantum exact learning via queries, the so-called quantum prot...
The theories of optimization and machine learning answer foundational questions in computer science ...
This dissertation explores results at the intersection of two important branches of theoretical comp...
Quantum Computing leverages the quantum properties of subatomic matter to enable computations faster...
This paper surveys quantum learning theory: the theoretical aspects of machine learning using quantu...
The theories of optimization and machine learning answer foundational questions in computer science ...
© 2020 The author(s). This is a review of quantum methods for machine learning problems that consist...
Today, a modern and interesting research area is machine learning. Another new and exciting research...
<p>This document present a brief introduction to basic notions in quantum computing and try to<br>gi...
Quantum machine learning has proven to be a fruitful area in which to search for potential applicati...
Quantum computing represents a promising paradigm for solving complex problems, such as large-number...
We initiate the study of quantum algorithms for escaping from saddle points with provable guarantee....
We present two new results about exact learning by quantum computers. First,we show how to exactly l...
In this dissertation, we study the intersection of quantum computing and supervised machine learning...
In this paper, we present a performance comparison of machine learning algorithms executed on tradit...